SlideShare une entreprise Scribd logo
1  sur  41
Télécharger pour lire hors ligne
From Zero
To Capacity Planning
@Randommood
INES

Sombra
Globallydistributed and Highly available
Whycapacity
planning?
Or a journey of discovery and ingenuity
The views reflected in this talk
are not to be considered a
reflection of the skills of my
coworkers who are extremely
nice human beings and way
better at capacity planning
than I am.
😜
NOTAmonitoring
person
💀
🚨🚨
INSTRUMENT
MONITOR &
ALERT
PLAN
&
PREDICT
The Road to Capacity planning
?
FindingsBooks
0
Day One
Some Learning
Our Discoveries
Rituals
&Myths
Asking Around
Bringing it Home
our Path today
Checking The
Edge
zero… Oh shit!
aconvenient”situation”
Handles State
Many Clients
Othersystemsdependonthisservicetobe:up,healthy,andavailable!
A bit F*cked
Our 

World
Edge Core✨ ✨
a Fastly POP
I Rule the
Edge!
Evaluates weekly global
POPs performance &
makes projections
Publishes capacity
performance report in
clear location
Plans for our physical
capacity & transit
capacity
Meet Catharine
Planning Our Capacity
Some metrics
- Network Capacity (Gb) 

- Ordered Network Capability (Gb) 

- Planned Network Capacity (Gb)

- RPS Capacity (k) 

- Network peak (Gb) 

- RPS peak (k) 

- Site CPU Peak (%) 

- Network Utilization (%)
Over 30%: flagged, Over 70%:
Red status
Edge Insights
Our ability to correctly plan for
capacity is critical to our
bottom line
Capacity doesn’t just involve
hardware; software
optimizations matter
People affect capacity
Hitting
The
Books
Defining Capacity planning
Measuring, planning, & managing system growth
Determines what your system needs & when
From the observation of actual traffic. Use current
performance as baseline.
Must happen regardless of what you might
optimize
ARE
WE RIGHT
NOW?
We have to be
this fast & reliable 

X per second & Y%
Uptime
MEASURE HOW/RELIABLE WE ARE
HARDWARE
SOFTWARE
ARCHITECTURE
CHANGE / ADD / REMOVE
FIGURE OUT
HOW TO STAY
FAST/RELIABLE
ENOUGH
Yes!
No!
Allspaw's Wisdom
From The Art of Capacity Planning
👈
System’s Ceiling: critical level of a
resource that cannot be crossed
without failure. Find yours
Another form of Capacity Planning:
Controlled load testing
Predictions: ceilings + historical data
Allspaw's Wisdom
Allspaw's Wisdom
System architecture can affect your
ability to add capacity
Identify & track your application’s
metrics
Tying metrics to user behavior is helpful
If you don’t have ways to measure
your current capacity you can’t plan
Little’s Law & Capacity planning
L = λW
Capacity (L), Throughput (λ),
and Latency (W)
Applies to stable systems
Use this information to better
understand our workload and to
define constraints
Literature Insights
Possible to have plenty of capacity and
a slow site nonetheless
Projections & curve fitting are guesses
Keep track of API calls & their rate
Always gonna be spikes & hiccups.
Take the bad with the good & plan for it
Rituals
&
Myths
Crowdsourcing Capacity planning
Crowdsourcing Capacity planning
Industry Insights
Hard to extrapolate general
advice into something
applicable for my situation
Simplicity & ability to reason are
the only things I could trust
Confusing community stance on
the ROI of capacity planning
& Putting things in practice
Findings
Step One Step Two
steps followed
Documented system
architecture &
request lifecycle
Formalized: clients,
SLAs, & operational
requirements
Discovery
Confirmed constraints
& determined strategy
Parallelized capacity
& optimizations tasks
Organized a team
Gauging & Planning
Edge
Core APP / API APP / API
LB LB
COORDINATOR A COORDINATOR B COORDINATOR C
🐤
CACHE
LON
CACHE
DFW
CACHE
FRA
CACHE
LAX
CACHE
AMS
CACHE
SYD
REQUEST flow
📄 📄 📄👉
Step Four
steps followed
Start process again
Tons of tuning left to
do. We know we
have suboptimal
configs!
re-Evaluation
Step Three
Doubled RAM: our
constrained resource
Horizontally scaled to 3
servers + 1 canary
Capacity expansion
System Before
System After
System Before System After
System Before System After
Unexpected Challenges
Our goal when adding capacity
was no service disruption.
Localhost is the goddamn devil
Gap from metric/graph to
insight can be huge
Slowness is the nemesis of
distributed system
The Oprah Problem
Developing operational
insights into non-owned
system under pressure is
not great
Use playbooks,
debug.md, rotations, &
rollout owners
Proactivity and clarity
are your best tools
Everyone
gets more
capacity!
Some Insights
Anything API driven ought to
carry a rate limit - We can
easily DDOS ourselves!
Monitor and alert on
expensive API actions
Mind your system
dependencies: practice
defensive system design &
architecture
CAPACITY
PLANNING
ALERTING
MONITORING
Some Findings
Capacity tied to murky
organizational structure
is both good & bad
(but mostly bad)
Mind your error
descriptions! Cheeky
today ⇒ misleading
tomorrow!
Finding my system’s ceiling is still tricky
Services owned by engineers means
you need to level up on Ops skills
Back to re-evaluate setup to get more
out of this new capacity
Performance testing ought to be done
on the core’s side (& edge)
My Insights
TL;DR
Is a process not a one
time event
Pushes you to better
understand your
system, its capacity &
its boundaries - that is
good!
Proactivity is best
Capacity planning
Request lifecycle gets
tricky
System boundaries,
dependencies & SLAs
must be discussed
Your system’s capacity
may bound other
systems capacity
Distributed systems
github.com/Randommood/ZerotoCapacityPlanning
Special Thanks to: Catharine Strauss,
Alan Kasindorf, Matt Whiteley,
Caitie McCaffrey, Thom Mahoney,
Mike O’Neill, Devon O’Dell,
Katherine Daniels, Nathan Taylor,
Bruce Spang, and Greg Bako
Thank you !
github.com/Randommood/ZerotoCapacityPlanning

Contenu connexe

En vedette

Performance Of Pb Free Solder Pastes At Different Reflow
Performance Of Pb Free Solder Pastes At Different ReflowPerformance Of Pb Free Solder Pastes At Different Reflow
Performance Of Pb Free Solder Pastes At Different Reflowvolcanicvoltage
 
SAP PLM BOM (Bill of Material) Redlining
SAP PLM BOM (Bill of Material) RedliningSAP PLM BOM (Bill of Material) Redlining
SAP PLM BOM (Bill of Material) RedliningEric Stajda
 
A Simple Pcba Design
A Simple Pcba DesignA Simple Pcba Design
A Simple Pcba DesignHieu Pham
 
Statistical Process Control for SMT Electronic Manufacturing
Statistical Process Control for SMT Electronic ManufacturingStatistical Process Control for SMT Electronic Manufacturing
Statistical Process Control for SMT Electronic ManufacturingBill Cardoso
 
MRP, MPS, Bill of Material, Numericals
MRP, MPS, Bill of Material, NumericalsMRP, MPS, Bill of Material, Numericals
MRP, MPS, Bill of Material, NumericalsSana Fatima
 
Process Strategies and Capacity Planning
Process Strategies and Capacity PlanningProcess Strategies and Capacity Planning
Process Strategies and Capacity PlanningJaisa Gapuz
 
Chapter13 pcb design
Chapter13 pcb designChapter13 pcb design
Chapter13 pcb designVin Voro
 
Use of ict for effective teaching and learning
Use of ict for effective teaching and learningUse of ict for effective teaching and learning
Use of ict for effective teaching and learningAjith Janardhanan T J
 
Capacity Planning
Capacity PlanningCapacity Planning
Capacity PlanningMOHD ARISH
 
PowerPoint Tutorial Presentation - Tips & Tricks
PowerPoint Tutorial Presentation - Tips & TricksPowerPoint Tutorial Presentation - Tips & Tricks
PowerPoint Tutorial Presentation - Tips & TricksNiezette -
 

En vedette (13)

Performance Of Pb Free Solder Pastes At Different Reflow
Performance Of Pb Free Solder Pastes At Different ReflowPerformance Of Pb Free Solder Pastes At Different Reflow
Performance Of Pb Free Solder Pastes At Different Reflow
 
Design 2
Design 2Design 2
Design 2
 
SAP PLM BOM (Bill of Material) Redlining
SAP PLM BOM (Bill of Material) RedliningSAP PLM BOM (Bill of Material) Redlining
SAP PLM BOM (Bill of Material) Redlining
 
A Simple Pcba Design
A Simple Pcba DesignA Simple Pcba Design
A Simple Pcba Design
 
Statistical Process Control for SMT Electronic Manufacturing
Statistical Process Control for SMT Electronic ManufacturingStatistical Process Control for SMT Electronic Manufacturing
Statistical Process Control for SMT Electronic Manufacturing
 
MRP, MPS, Bill of Material, Numericals
MRP, MPS, Bill of Material, NumericalsMRP, MPS, Bill of Material, Numericals
MRP, MPS, Bill of Material, Numericals
 
Cv afm 2015_11_10_ok2
Cv afm 2015_11_10_ok2Cv afm 2015_11_10_ok2
Cv afm 2015_11_10_ok2
 
Process Strategies and Capacity Planning
Process Strategies and Capacity PlanningProcess Strategies and Capacity Planning
Process Strategies and Capacity Planning
 
Chapter13 pcb design
Chapter13 pcb designChapter13 pcb design
Chapter13 pcb design
 
Capacity planning
Capacity planning Capacity planning
Capacity planning
 
Use of ict for effective teaching and learning
Use of ict for effective teaching and learningUse of ict for effective teaching and learning
Use of ict for effective teaching and learning
 
Capacity Planning
Capacity PlanningCapacity Planning
Capacity Planning
 
PowerPoint Tutorial Presentation - Tips & Tricks
PowerPoint Tutorial Presentation - Tips & TricksPowerPoint Tutorial Presentation - Tips & Tricks
PowerPoint Tutorial Presentation - Tips & Tricks
 

Similaire à From 0 to Capacity Planning

PAC 2020 Santorin - Stijn Schepers
PAC 2020 Santorin - Stijn SchepersPAC 2020 Santorin - Stijn Schepers
PAC 2020 Santorin - Stijn SchepersNeotys
 
Initiate Edinburgh 2019 - Big Data Meets AI
Initiate Edinburgh 2019 - Big Data Meets AIInitiate Edinburgh 2019 - Big Data Meets AI
Initiate Edinburgh 2019 - Big Data Meets AIAmazon Web Services
 
Hadoop and the Relational Database: The Best of Both Worlds
Hadoop and the Relational Database: The Best of Both WorldsHadoop and the Relational Database: The Best of Both Worlds
Hadoop and the Relational Database: The Best of Both WorldsInside Analysis
 
Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...
Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...
Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...Renato Bonomini
 
AWS Initiate Day Manchester 2019 – AWS Big Data Meets AI
AWS Initiate Day Manchester 2019 – AWS Big Data Meets AIAWS Initiate Day Manchester 2019 – AWS Big Data Meets AI
AWS Initiate Day Manchester 2019 – AWS Big Data Meets AIAmazon Web Services
 
RISC Networks CloudScape Product Overview
RISC Networks CloudScape Product OverviewRISC Networks CloudScape Product Overview
RISC Networks CloudScape Product OverviewRISC Networks
 
AWS Initiate Day Dublin 2019 – Big Data Meets AI
AWS Initiate Day Dublin 2019 – Big Data Meets AIAWS Initiate Day Dublin 2019 – Big Data Meets AI
AWS Initiate Day Dublin 2019 – Big Data Meets AIAmazon Web Services
 
Scaling unstable systems velocity 2015
Scaling unstable systems   velocity 2015Scaling unstable systems   velocity 2015
Scaling unstable systems velocity 2015Siddharth Ram
 
Tech essentials for Product managers
Tech essentials for Product managersTech essentials for Product managers
Tech essentials for Product managersNitin T Bhat
 
Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...
Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...
Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...Amazon Web Services
 
[Webinar] When It Comes To Cloud, Great Power Brings Great Responsibility
[Webinar] When It Comes To Cloud, Great Power Brings Great Responsibility[Webinar] When It Comes To Cloud, Great Power Brings Great Responsibility
[Webinar] When It Comes To Cloud, Great Power Brings Great ResponsibilityOpsRamp
 
R and Big Data using Revolution R Enterprise with Hadoop
R and Big Data using Revolution R Enterprise with HadoopR and Big Data using Revolution R Enterprise with Hadoop
R and Big Data using Revolution R Enterprise with HadoopRevolution Analytics
 
Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...
Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...
Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...confluent
 
Making Observability Actionable At Scale - DBS DevConnect 2019
Making Observability Actionable At Scale - DBS DevConnect 2019Making Observability Actionable At Scale - DBS DevConnect 2019
Making Observability Actionable At Scale - DBS DevConnect 2019Squadcast Inc
 
February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...
February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...
February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...Yahoo Developer Network
 
Big data meets evm (submitted).pptx
Big data meets evm (submitted).pptxBig data meets evm (submitted).pptx
Big data meets evm (submitted).pptxGlen Alleman
 
We are drowning in complexity—can we do better?
We are drowning in complexity—can we do better?We are drowning in complexity—can we do better?
We are drowning in complexity—can we do better?Jonas Bonér
 
Bitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FSBitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FSPhilip Filleul
 
The Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data ImplementationThe Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data ImplementationInside Analysis
 
The Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeThe Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeInside Analysis
 

Similaire à From 0 to Capacity Planning (20)

PAC 2020 Santorin - Stijn Schepers
PAC 2020 Santorin - Stijn SchepersPAC 2020 Santorin - Stijn Schepers
PAC 2020 Santorin - Stijn Schepers
 
Initiate Edinburgh 2019 - Big Data Meets AI
Initiate Edinburgh 2019 - Big Data Meets AIInitiate Edinburgh 2019 - Big Data Meets AI
Initiate Edinburgh 2019 - Big Data Meets AI
 
Hadoop and the Relational Database: The Best of Both Worlds
Hadoop and the Relational Database: The Best of Both WorldsHadoop and the Relational Database: The Best of Both Worlds
Hadoop and the Relational Database: The Best of Both Worlds
 
Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...
Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...
Capacity Management and BigData/Hadoop - Hitchhiker's guide for the Capacity ...
 
AWS Initiate Day Manchester 2019 – AWS Big Data Meets AI
AWS Initiate Day Manchester 2019 – AWS Big Data Meets AIAWS Initiate Day Manchester 2019 – AWS Big Data Meets AI
AWS Initiate Day Manchester 2019 – AWS Big Data Meets AI
 
RISC Networks CloudScape Product Overview
RISC Networks CloudScape Product OverviewRISC Networks CloudScape Product Overview
RISC Networks CloudScape Product Overview
 
AWS Initiate Day Dublin 2019 – Big Data Meets AI
AWS Initiate Day Dublin 2019 – Big Data Meets AIAWS Initiate Day Dublin 2019 – Big Data Meets AI
AWS Initiate Day Dublin 2019 – Big Data Meets AI
 
Scaling unstable systems velocity 2015
Scaling unstable systems   velocity 2015Scaling unstable systems   velocity 2015
Scaling unstable systems velocity 2015
 
Tech essentials for Product managers
Tech essentials for Product managersTech essentials for Product managers
Tech essentials for Product managers
 
Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...
Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...
Easy Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Mac...
 
[Webinar] When It Comes To Cloud, Great Power Brings Great Responsibility
[Webinar] When It Comes To Cloud, Great Power Brings Great Responsibility[Webinar] When It Comes To Cloud, Great Power Brings Great Responsibility
[Webinar] When It Comes To Cloud, Great Power Brings Great Responsibility
 
R and Big Data using Revolution R Enterprise with Hadoop
R and Big Data using Revolution R Enterprise with HadoopR and Big Data using Revolution R Enterprise with Hadoop
R and Big Data using Revolution R Enterprise with Hadoop
 
Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...
Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...
Using Machine Learning to Understand Kafka Runtime Behavior (Shivanath Babu, ...
 
Making Observability Actionable At Scale - DBS DevConnect 2019
Making Observability Actionable At Scale - DBS DevConnect 2019Making Observability Actionable At Scale - DBS DevConnect 2019
Making Observability Actionable At Scale - DBS DevConnect 2019
 
February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...
February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...
February 2017 HUG: Slow, Stuck, or Runaway Apps? Learn How to Quickly Fix Pro...
 
Big data meets evm (submitted).pptx
Big data meets evm (submitted).pptxBig data meets evm (submitted).pptx
Big data meets evm (submitted).pptx
 
We are drowning in complexity—can we do better?
We are drowning in complexity—can we do better?We are drowning in complexity—can we do better?
We are drowning in complexity—can we do better?
 
Bitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FSBitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FS
 
The Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data ImplementationThe Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data Implementation
 
The Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeThe Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On Time
 

Plus de Ines Sombra

Architectural Patterns of Resilient Distributed Systems
 Architectural Patterns of Resilient Distributed Systems Architectural Patterns of Resilient Distributed Systems
Architectural Patterns of Resilient Distributed SystemsInes Sombra
 
We hear you like papers
We hear you like papersWe hear you like papers
We hear you like papersInes Sombra
 
Testing & Integration (The Remix)
 Testing & Integration (The Remix) Testing & Integration (The Remix)
Testing & Integration (The Remix)Ines Sombra
 
Agile, Rugged, and Lean - The Paper Edition
Agile, Rugged, and Lean - The Paper EditionAgile, Rugged, and Lean - The Paper Edition
Agile, Rugged, and Lean - The Paper EditionInes Sombra
 
Data antipatterns NYC Devops - 2014
Data antipatterns NYC Devops - 2014Data antipatterns NYC Devops - 2014
Data antipatterns NYC Devops - 2014Ines Sombra
 
Computational Patterns of the Cloud - QCon NYC 2014
Computational Patterns of the Cloud - QCon NYC 2014Computational Patterns of the Cloud - QCon NYC 2014
Computational Patterns of the Cloud - QCon NYC 2014Ines Sombra
 
How the Cloud is changing the world
How the Cloud is changing the worldHow the Cloud is changing the world
How the Cloud is changing the worldInes Sombra
 
NoSQL Databases in the Cloud - Great Wide Open 2014
NoSQL Databases in the Cloud - Great Wide Open 2014NoSQL Databases in the Cloud - Great Wide Open 2014
NoSQL Databases in the Cloud - Great Wide Open 2014Ines Sombra
 
Relational Databases in the Cloud - Great Wide Open 2014
Relational Databases in the Cloud - Great Wide Open 2014Relational Databases in the Cloud - Great Wide Open 2014
Relational Databases in the Cloud - Great Wide Open 2014Ines Sombra
 
Data Antipatterns
Data AntipatternsData Antipatterns
Data AntipatternsInes Sombra
 
Getting started with Riak in the Cloud
Getting started with Riak in the CloudGetting started with Riak in the Cloud
Getting started with Riak in the CloudInes Sombra
 
Riak at Engine Yard Cloud
Riak at Engine Yard CloudRiak at Engine Yard Cloud
Riak at Engine Yard CloudInes Sombra
 
North Bay Ruby Meetup 101911
North Bay Ruby Meetup 101911North Bay Ruby Meetup 101911
North Bay Ruby Meetup 101911Ines Sombra
 

Plus de Ines Sombra (17)

Architectural Patterns of Resilient Distributed Systems
 Architectural Patterns of Resilient Distributed Systems Architectural Patterns of Resilient Distributed Systems
Architectural Patterns of Resilient Distributed Systems
 
We hear you like papers
We hear you like papersWe hear you like papers
We hear you like papers
 
Testing & Integration (The Remix)
 Testing & Integration (The Remix) Testing & Integration (The Remix)
Testing & Integration (The Remix)
 
Agile, Rugged, and Lean - The Paper Edition
Agile, Rugged, and Lean - The Paper EditionAgile, Rugged, and Lean - The Paper Edition
Agile, Rugged, and Lean - The Paper Edition
 
Data antipatterns NYC Devops - 2014
Data antipatterns NYC Devops - 2014Data antipatterns NYC Devops - 2014
Data antipatterns NYC Devops - 2014
 
Computational Patterns of the Cloud - QCon NYC 2014
Computational Patterns of the Cloud - QCon NYC 2014Computational Patterns of the Cloud - QCon NYC 2014
Computational Patterns of the Cloud - QCon NYC 2014
 
How the Cloud is changing the world
How the Cloud is changing the worldHow the Cloud is changing the world
How the Cloud is changing the world
 
NoSQL Databases in the Cloud - Great Wide Open 2014
NoSQL Databases in the Cloud - Great Wide Open 2014NoSQL Databases in the Cloud - Great Wide Open 2014
NoSQL Databases in the Cloud - Great Wide Open 2014
 
Relational Databases in the Cloud - Great Wide Open 2014
Relational Databases in the Cloud - Great Wide Open 2014Relational Databases in the Cloud - Great Wide Open 2014
Relational Databases in the Cloud - Great Wide Open 2014
 
Hello data
Hello dataHello data
Hello data
 
Data Antipatterns
Data AntipatternsData Antipatterns
Data Antipatterns
 
Ricon east
Ricon eastRicon east
Ricon east
 
PgPyDay
PgPyDayPgPyDay
PgPyDay
 
Getting started with Riak in the Cloud
Getting started with Riak in the CloudGetting started with Riak in the Cloud
Getting started with Riak in the Cloud
 
Riak at Engine Yard Cloud
Riak at Engine Yard CloudRiak at Engine Yard Cloud
Riak at Engine Yard Cloud
 
Postgres Open
Postgres OpenPostgres Open
Postgres Open
 
North Bay Ruby Meetup 101911
North Bay Ruby Meetup 101911North Bay Ruby Meetup 101911
North Bay Ruby Meetup 101911
 

Dernier

Transport layer issues and challenges - Guide
Transport layer issues and challenges - GuideTransport layer issues and challenges - Guide
Transport layer issues and challenges - GuideGOPINATHS437943
 
Main Memory Management in Operating System
Main Memory Management in Operating SystemMain Memory Management in Operating System
Main Memory Management in Operating SystemRashmi Bhat
 
CCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdf
CCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdfCCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdf
CCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdfAsst.prof M.Gokilavani
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AIabhishek36461
 
National Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdfNational Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdfRajuKanojiya4
 
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTIONTHE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTIONjhunlian
 
Research Methodology for Engineering pdf
Research Methodology for Engineering pdfResearch Methodology for Engineering pdf
Research Methodology for Engineering pdfCaalaaAbdulkerim
 
home automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasadhome automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasadaditya806802
 
Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...121011101441
 
Steel Structures - Building technology.pptx
Steel Structures - Building technology.pptxSteel Structures - Building technology.pptx
Steel Structures - Building technology.pptxNikhil Raut
 
Correctly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleCorrectly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleAlluxio, Inc.
 
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsyncWhy does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsyncssuser2ae721
 
Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...VICTOR MAESTRE RAMIREZ
 
System Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event SchedulingSystem Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event SchedulingBootNeck1
 
Input Output Management in Operating System
Input Output Management in Operating SystemInput Output Management in Operating System
Input Output Management in Operating SystemRashmi Bhat
 
welding defects observed during the welding
welding defects observed during the weldingwelding defects observed during the welding
welding defects observed during the weldingMuhammadUzairLiaqat
 
The SRE Report 2024 - Great Findings for the teams
The SRE Report 2024 - Great Findings for the teamsThe SRE Report 2024 - Great Findings for the teams
The SRE Report 2024 - Great Findings for the teamsDILIPKUMARMONDAL6
 
Introduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECHIntroduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECHC Sai Kiran
 
Mine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptxMine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptxRomil Mishra
 
An experimental study in using natural admixture as an alternative for chemic...
An experimental study in using natural admixture as an alternative for chemic...An experimental study in using natural admixture as an alternative for chemic...
An experimental study in using natural admixture as an alternative for chemic...Chandu841456
 

Dernier (20)

Transport layer issues and challenges - Guide
Transport layer issues and challenges - GuideTransport layer issues and challenges - Guide
Transport layer issues and challenges - Guide
 
Main Memory Management in Operating System
Main Memory Management in Operating SystemMain Memory Management in Operating System
Main Memory Management in Operating System
 
CCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdf
CCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdfCCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdf
CCS355 Neural Networks & Deep Learning Unit 1 PDF notes with Question bank .pdf
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AI
 
National Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdfNational Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdf
 
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTIONTHE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
 
Research Methodology for Engineering pdf
Research Methodology for Engineering pdfResearch Methodology for Engineering pdf
Research Methodology for Engineering pdf
 
home automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasadhome automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasad
 
Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...
 
Steel Structures - Building technology.pptx
Steel Structures - Building technology.pptxSteel Structures - Building technology.pptx
Steel Structures - Building technology.pptx
 
Correctly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleCorrectly Loading Incremental Data at Scale
Correctly Loading Incremental Data at Scale
 
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsyncWhy does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
 
Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...
 
System Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event SchedulingSystem Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event Scheduling
 
Input Output Management in Operating System
Input Output Management in Operating SystemInput Output Management in Operating System
Input Output Management in Operating System
 
welding defects observed during the welding
welding defects observed during the weldingwelding defects observed during the welding
welding defects observed during the welding
 
The SRE Report 2024 - Great Findings for the teams
The SRE Report 2024 - Great Findings for the teamsThe SRE Report 2024 - Great Findings for the teams
The SRE Report 2024 - Great Findings for the teams
 
Introduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECHIntroduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECH
 
Mine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptxMine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptx
 
An experimental study in using natural admixture as an alternative for chemic...
An experimental study in using natural admixture as an alternative for chemic...An experimental study in using natural admixture as an alternative for chemic...
An experimental study in using natural admixture as an alternative for chemic...
 

From 0 to Capacity Planning